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Yasin Khadem Charvadeh1, Grace Y Yi1,2

  • 1Department of Statistical and Actuarial Sciences, University of Western Ontario, London, Ontario, Canada.

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|January 12, 2024
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Summary
This summary is machine-generated.

Ignoring misclassified covariates in dynamic treatment regimes harms Q-learning. This study introduces two correction methods to mitigate bias in parameter estimation for optimal decision rules.

Keywords:
Q-learningdynamic treatment regimesestimating functionmisclassificationregression calibrationregression models

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Area of Science:

  • Statistics
  • Machine Learning
  • Biostatistics

Background:

  • Dynamic treatment regimes (DTRs) are crucial for personalized medicine.
  • Existing DTR methods, including Q-learning, are sensitive to misclassified covariates.
  • The impact of covariate misclassification on Q-learning remains underexplored.

Purpose of the Study:

  • To investigate the effects of ignoring misclassified binary covariates on Q-learning for optimal decision rules in DTRs.
  • To propose and evaluate methods for correcting Q-learning in the presence of covariate misclassification.

Main Methods:

  • Empirical studies were conducted to demonstrate the impact of misclassification on Q-learning.
  • Two novel correction methods were developed to address misclassification bias.
  • Numerical simulations were used to assess the performance of the proposed methods.

Main Results:

  • Ignoring misclassification in binary covariates leads to significant estimation bias in Q-learning.
  • The proposed correction methods effectively reduce estimation bias.
  • Parameter estimation accuracy is improved by the correction methods.

Conclusions:

  • Covariate misclassification poses a substantial challenge for Q-learning in DTRs.
  • The developed correction methods offer a viable solution to mitigate bias.
  • Accurate parameter estimation is achievable even with misclassified covariates using the proposed techniques.